Design of Expert System for Digestive Diseases Identification Using Naïve Bayes Methodology for iOS-Based Application

Dewi Salma Salsabila, Rinabi Tanamal
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引用次数: 3

Abstract

Shown symptoms in digestive diseases might be similar, resulting in patient’s suspected diseases before and after diagnosis attempt might turn out to be different. This paper aims to build a design of an expert system for digestive disease identification using Naïve Bayes methodology for iOS-based applications. The result from this paper helps medical interns to increase the accuracy in predicting patient’s suspected digestive disease. A precise prediction in suspected disease identification can minimalize unnecessary diagnosis attempts, which saves time and reduces cost. Naïve Bayes is chosen because it has a higher accuracy level than other classification methods. This research includes collecting data through literature reviews on digestive diseases and their symptoms, processing the data to be turned into a knowledge base for the expert system, conducting data training using Naïve Bayes by the designed expert system application through this research. The result from the conducted data training using Naïve Bayes methodology shows that the expert system application has a higher accuracy level, which is 84%.
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基于ios的消化系统疾病识别专家系统Naïve贝叶斯方法设计
消化系统疾病的表现症状可能相似,导致患者在诊断前和诊断后的疑似疾病尝试可能不同。本文旨在构建一个基于ios应用的消化系统疾病识别专家系统的设计,该系统采用Naïve贝叶斯方法。本文的研究结果有助于提高实习医师对患者疑似消化系统疾病的预测准确性。对疑似疾病的准确预测可以最大限度地减少不必要的诊断尝试,从而节省时间和降低成本。Naïve选择贝叶斯是因为它比其他分类方法具有更高的准确率。本研究包括通过对消化系统疾病及其症状的文献综述收集数据,将数据处理成专家系统的知识库,通过本研究设计的专家系统应用使用Naïve贝叶斯进行数据训练。使用Naïve贝叶斯方法进行数据训练的结果表明,专家系统应用程序具有更高的准确率水平,达到84%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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审稿时长
10 weeks
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